Forward and backward uncertainty quantification with active subspaces: application to hypersonic flows around a cylinder
CORTESI, Andrea
Certified Adaptive discRete moDels for robust simulAtions of CoMplex flOws with Moving fronts [CARDAMOM]
Voir plus >
Certified Adaptive discRete moDels for robust simulAtions of CoMplex flOws with Moving fronts [CARDAMOM]
CORTESI, Andrea
Certified Adaptive discRete moDels for robust simulAtions of CoMplex flOws with Moving fronts [CARDAMOM]
Certified Adaptive discRete moDels for robust simulAtions of CoMplex flOws with Moving fronts [CARDAMOM]
CONGEDO, Pietro Marco
Uncertainty Quantification in Scientific Computing and Engineering [PLATON]
Shape reconstruction and identification [DeFI]
< Réduire
Uncertainty Quantification in Scientific Computing and Engineering [PLATON]
Shape reconstruction and identification [DeFI]
Langue
en
Article de revue
Ce document a été publié dans
Journal of Computational Physics. 2020-04-15, vol. 407, p. 109079
Elsevier
Résumé en anglais
We perform a Bayesian calibration of the freestream velocity and density starting from measurements of the pressure and heat flux at the stagnation point of a hypersonic high-enthalpy flow around a cylinder. The objective ...Lire la suite >
We perform a Bayesian calibration of the freestream velocity and density starting from measurements of the pressure and heat flux at the stagnation point of a hypersonic high-enthalpy flow around a cylinder. The objective is to explore the possibility of using stagnation heat flux measurements, together with pressure measurements, to rebuild freestream conditions since such measurements are available for recent space missions but not exploited for freestream characterization. First, we formulate an algorithm of mesh adaptation, enabling accurate numerical solutions in an automatic way for a given set of inputs. Secondly, active subspaces are used to find a lowdimensional dependence structures in the input-to-output map of the forward numerical solver. Then, surrogate models on the active variables are used to accelerate the forward uncertainty propagation by Monte Carlo sampling and the Markov Chain Monte Carlo sampling of the posterior distribution for Bayesian inversion. A preliminary sensitivity analysis with sparse Polynomial Dimensional Decomposition is performed on the chemical model of the air mixture, to determine the most influential uncertain chemical parameters in the forward problem. Then, the forward and backward methodologies are applied to the simulation of a hypersonic flow around a cylinder, in conditions for which experimental data are available, revealing new insights towards the potential exploitation of heat flux data for freestream rebuilding.< Réduire
Mots clés en anglais
Hypersonic Flows
Inverse problems
Bayesian inference
Uncertainty Quantification
Active Subspaces
Surrogate modeling
Origine
Importé de halUnités de recherche